Industrial-strength NLP
Project description
spaCy is a library for advanced natural language processing in Python and Cython. spaCy is built on the very latest research, but it isn’t researchware. It was designed from day 1 to be used in real products. It’s commercial open-source software, released under the MIT license.
💫 Version 1.5 out now! Read the release notes here.
📖 Documentation
How to use spaCy and its features. |
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The detailed reference for spaCy’s API. |
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End-to-end examples, with code you can modify and run. |
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Demos, libraries and products from the spaCy community. |
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How to contribute to the spaCy project and code base. |
💬 Where to ask questions
Bug reports |
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Usage questions |
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General discussion |
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Commercial support |
Features
Non-destructive tokenization
Syntax-driven sentence segmentation
Pre-trained word vectors
Part-of-speech tagging
Named entity recognition
Labelled dependency parsing
Convenient string-to-int mapping
Export to numpy data arrays
GIL-free multi-threading
Efficient binary serialization
Easy deep learning integration
Statistical models for English and German
State-of-the-art speed
Robust, rigorously evaluated accuracy
Top Performance
Fastest in the world: <50ms per document. No faster system has ever been announced.
Accuracy within 1% of the current state of the art on all tasks performed (parsing, named entity recognition, part-of-speech tagging). The only more accurate systems are an order of magnitude slower or more.
Supports
CPython 2.6, 2.7, 3.3, 3.4, 3.5 (only 64 bit)
macOS / OS X
Linux
Windows (Cygwin, MinGW, Visual Studio)
Install spaCy
spaCy is compatible with 64-bit CPython 2.6+/3.3+ and runs on Unix/Linux, OS X and Windows. Source packages are available via pip. Please make sure that you have a working build enviroment set up. See notes on Ubuntu, macOS/OS X and Windows for details.
pip
When using pip it is generally recommended to install packages in a virtualenv to avoid modifying system state:
pip install spacy
Python packaging is awkward at the best of times, and it’s particularly tricky with C extensions, built via Cython, requiring large data files. So, please report issues as you encounter them.
Install model
After installation you need to download a language model. Currently only models for English and German, named en and de, are available.
python -m spacy.en.download all
python -m spacy.de.download all
The download command fetches about 1 GB of data which it installs within the spacy package directory.
Upgrading spaCy
To upgrade spaCy to the latest release:
pip
pip install -U spacy
Sometimes new releases require a new language model. Then you will have to upgrade to a new model, too. You can also force re-downloading and installing a new language model:
python -m spacy.en.download --force
Compile from source
The other way to install spaCy is to clone its GitHub repository and build it from source. That is the common way if you want to make changes to the code base.
You’ll need to make sure that you have a development enviroment consisting of a Python distribution including header files, a compiler, pip, virtualenv and git installed. The compiler part is the trickiest. How to do that depends on your system. See notes on Ubuntu, OS X and Windows for details.
# make sure you are using recent pip/virtualenv versions
python -m pip install -U pip virtualenv
# find git install instructions at https://git-scm.com/downloads
git clone https://github.com/explosion/spaCy.git
cd spaCy
virtualenv .env && source .env/bin/activate
pip install -r requirements.txt
pip install -e .
Compared to regular install via pip requirements.txt additionally installs developer dependencies such as cython.
Ubuntu
Install system-level dependencies via apt-get:
sudo apt-get install build-essential python-dev git
macOS / OS X
Install a recent version of XCode, including the so-called “Command Line Tools”. macOS and OS X ship with Python and git preinstalled.
Windows
Install a version of Visual Studio Express or higher that matches the version that was used to compile your Python interpreter. For official distributions these are VS 2008 (Python 2.7), VS 2010 (Python 3.4) and VS 2015 (Python 3.5).
Run tests
spaCy comes with an extensive test suite. First, find out where spaCy is installed:
python -c "import os; import spacy; print(os.path.dirname(spacy.__file__))"
Then run pytest on that directory. The flags --vectors, --slow and --model are optional and enable additional tests:
# make sure you are using recent pytest version
python -m pip install -U pytest
python -m pytest <spacy-directory> --vectors --model --slow
Download model to custom location
You can specify where spacy.en.download and spacy.de.download download the language model to using the --data-path or -d argument:
python -m spacy.en.download all --data-path /some/dir
If you choose to download to a custom location, you will need to tell spaCy where to load the model from in order to use it. You can do this either by calling spacy.util.set_data_path() before calling spacy.load(), or by passing a path argument to the spacy.en.English or spacy.de.German constructors.
Changelog
2016-12-27 v1.5.0: Alpha support for Swedish and Hungarian
✨ Major features and improvements
NEW: Alpha support for Swedish tokenization.
NEW: Alpha support for Hungarian tokenization.
Update language data for Spanish tokenization.
Speed up tokenization when no data is preloaded by caching the first 10,000 vocabulary items seen.
🔴 Bug fixes
List the language_data package in the setup.py.
Fix missing vec_path declaration that was failing if add_vectors was set.
Allow Vocab to load without serializer_freqs.
📖 Documentation and examples
NEW: spaCy Jupyter notebooks repo: ongoing collection of easy-to-run spaCy examples and tutorials.
Fix issue #657: Generalise dependency parsing annotation specs beyond English.
Fix various typos and inconsistencies.
👥 Contributors
Thanks to @oroszgy, @magnusburton, @jmizgajski, @aikramer2, @fnorf and @bhargavvader for the pull requests!
2016-12-18 v1.4.0: Improved language data and alpha Dutch support
✨ Major features and improvements
NEW: Alpha support for Dutch tokenization.
Reorganise and improve format for language data.
Add shared tag map, entity rules, emoticons and punctuation to language data.
Convert entity rules, morphological rules and lemmatization rules from JSON to Python.
Update language data for English, German, Spanish, French, Italian and Portuguese.
🔴 Bug fixes
Fix issue #649: Update and reorganise stop lists.
Fix issue #672: Make token.ent_iob_ return unicode.
Fix issue #674: Add missing lemmas for contracted forms of “be” to TOKENIZER_EXCEPTIONS.
Fix issue #683 Morphology class now supplies tag map value for the special space tag if it’s missing.
Fix issue #684: Ensure spacy.en.English() loads the Glove vector data if available. Previously was inconsistent with behaviour of spacy.load('en').
Fix issue #685: Expand TOKENIZER_EXCEPTIONS with unicode apostrophe (’).
Fix issue #689: Correct typo in STOP_WORDS.
Fix issue #691: Add tokenizer exceptions for “gonna” and “Gonna”.
⚠️ Backwards incompatibilities
No changes to the public, documented API, but the previously undocumented language data and model initialisation processes have been refactored and reorganised. If you were relying on the bin/init_model.py script, see the new spaCy Developer Resources repo. Code that references internals of the spacy.en or spacy.de packages should also be reviewed before updating to this version.
📖 Documentation and examples
NEW: “Adding languages” workflow.
NEW: “Part-of-speech tagging” workflow.
NEW: spaCy Developer Resources repo – scripts, tools and resources for developing spaCy.
Fix various typos and inconsistencies.
👥 Contributors
Thanks to @dafnevk, @jvdzwaan, @RvanNieuwpoort, @wrvhage, @jaspb, @savvopoulos and @davedwards for the pull requests!
2016-12-03 v1.3.0: Improve API consistency
✨ API improvements
Add Span.sentiment attribute.
#642: Let --data-path be specified when running download.py scripts (thanks @ExplodingCabbage).
#638: Add German stopwords (thanks @souravsingh).
#614: Fix PhraseMatcher to work with new Matcher (thanks @sadovnychyi).
🔴 Bug fixes
Fix issue #605: accept argument to Matcher now rejects matches as expected.
Fix issue #617: Vocab.load() now works with string paths, as well as Path objects.
Fix issue #639: Stop words in Language class now used as expected.
Fix issues #656, #624: Tokenizer special-case rules now support arbitrary token attributes.
📖 Documentation and examples
Add “Customizing the tokenizer” workflow.
Add “Training the tagger, parser and entity recognizer” workflow.
Add “Entity recognition” workflow.
Fix various typos and inconsistencies.
👥 Contributors
Thanks to @pokey, @ExplodingCabbage, @souravsingh, @sadovnychyi, @manojsakhwar, @TiagoMRodrigues, @savkov, @pspiegelhalter, @chenb67, @kylepjohnson, @YanhaoYang, @tjrileywisc, @dechov, @wjt, @jsmootiv and @blarghmatey for the pull requests!
2016-11-04 v1.2.0: Alpha tokenizers for Chinese, French, Spanish, Italian and Portuguese
✨ Major features and improvements
NEW: Support Chinese tokenization, via Jieba.
NEW: Alpha support for French, Spanish, Italian and Portuguese tokenization.
🔴 Bug fixes
Fix issue #376: POS tags for “and/or” are now correct.
Fix issue #578: --force argument on download command now operates correctly.
Fix issue #595: Lemmatization corrected for some base forms.
Fix issue #588: Matcher now rejects empty patterns.
Fix issue #592: Added exception rule for tokenization of “Ph.D.”
Fix issue #599: Empty documents now considered tagged and parsed.
Fix issue #600: Add missing token.tag and token.tag_ setters.
Fix issue #596: Added missing unicode import when compiling regexes that led to incorrect tokenization.
Fix issue #587: Resolved bug that caused Matcher to sometimes segfault.
Fix issue #429: Ensure missing entity types are added to the entity recognizer.
2016-10-23 v1.1.0: Bug fixes and adjustments
Rename new pipeline keyword argument of spacy.load() to create_pipeline.
Rename new vectors keyword argument of spacy.load() to add_vectors.
🔴 Bug fixes
Fix issue #544: Add vocab.resize_vectors() method, to support changing to vectors of different dimensionality.
Fix issue #536: Default probability was incorrect for OOV words.
Fix issue #539: Unspecified encoding when opening some JSON files.
Fix issue #541: GloVe vectors were being loaded incorrectly.
Fix issue #522: Similarities and vector norms were calculated incorrectly.
Fix issue #461: ent_iob attribute was incorrect after setting entities via doc.ents
Fix issue #459: Deserialiser failed on empty doc
Fix issue #514: Serialization failed after adding a new entity label.
2016-10-18 v1.0.0: Support for deep learning workflows and entity-aware rule matcher
✨ Major features and improvements
NEW: custom processing pipelines, to support deep learning workflows
NEW: Rule matcher now supports entity IDs and attributes
NEW: Official/documented training APIs and GoldParse class
Download and use GloVe vectors by default
Make it easier to load and unload word vectors
Improved rule matching functionality
Move basic data into the code, rather than the json files. This makes it simpler to use the tokenizer without the models installed, and makes adding new languages much easier.
Replace file-system strings with Path objects. You can now load resources over your network, or do similar trickery, by passing any object that supports the Path protocol.
⚠️ Backwards incompatibilities
The data_dir keyword argument of Language.__init__ (and its subclasses English.__init__ and German.__init__) has been renamed to path.
Details of how the Language base-class and its sub-classes are loaded, and how defaults are accessed, have been heavily changed. If you have your own subclasses, you should review the changes.
The deprecated token.repvec name has been removed.
The .train() method of Tagger and Parser has been renamed to .update()
The previously undocumented GoldParse class has a new __init__() method. The old method has been preserved in GoldParse.from_annot_tuples().
Previously undocumented details of the Parser class have changed.
The previously undocumented get_package and get_package_by_name helper functions have been moved into a new module, spacy.deprecated, in case you still need them while you update.
🔴 Bug fixes
Fix get_lang_class bug when GloVe vectors are used.
Fix Issue #411: doc.sents raised IndexError on empty string.
Fix Issue #455: Correct lemmatization logic
Fix Issue #371: Make Lexeme objects hashable
Fix Issue #469: Make noun_chunks detect root NPs
👥 Contributors
Thanks to @daylen, @RahulKulhari, @stared, @adamhadani, @izeye and @crawfordcomeaux for the pull requests!
2016-05-10 v0.101.0: Fixed German model
Fixed bug that prevented German parses from being deprojectivised.
Bug fixes to sentence boundary detection.
Add rich comparison methods to the Lexeme class.
Add missing Doc.has_vector and Span.has_vector properties.
Add missing Span.sent property.
2016-05-05 v0.100.7: German!
spaCy finally supports another language, in addition to English. We’re lucky to have Wolfgang Seeker on the team, and the new German model is just the beginning. Now that there are multiple languages, you should consider loading spaCy via the load() function. This function also makes it easier to load extra word vector data for English:
import spacy
en_nlp = spacy.load('en', vectors='en_glove_cc_300_1m_vectors')
de_nlp = spacy.load('de')
To support use of the load function, there are also two new helper functions: spacy.get_lang_class and spacy.set_lang_class. Once the German model is loaded, you can use it just like the English model:
doc = nlp(u'''Wikipedia ist ein Projekt zum Aufbau einer Enzyklopädie aus freien Inhalten, zu dem du mit deinem Wissen beitragen kannst. Seit Mai 2001 sind 1.936.257 Artikel in deutscher Sprache entstanden.''')
for sent in doc.sents:
print(sent.root.text, sent.root.n_lefts, sent.root.n_rights)
# (u'ist', 1, 2)
# (u'sind', 1, 3)
The German model provides tokenization, POS tagging, sentence boundary detection, syntactic dependency parsing, recognition of organisation, location and person entities, and word vector representations trained on a mix of open subtitles and Wikipedia data. It doesn’t yet provide lemmatisation or morphological analysis, and it doesn’t yet recognise numeric entities such as numbers and dates.
Bugfixes
spaCy < 0.100.7 had a bug in the semantics of the Token.__str__ and Token.__unicode__ built-ins: they included a trailing space.
Improve handling of “infixed” hyphens. Previously the tokenizer struggled with multiple hyphens, such as “well-to-do”.
Improve handling of periods after mixed-case tokens
Improve lemmatization for English special-case tokens
Fix bug that allowed spaces to be treated as heads in the syntactic parse
Fix bug that led to inconsistent sentence boundaries before and after serialisation.
Fix bug from deserialising untagged documents.
2016-03-08 v0.100.6: Add support for GloVe vectors
This release offers improved support for replacing the word vectors used by spaCy. To install Stanford’s GloVe vectors, trained on the Common Crawl, just run:
sputnik --name spacy install en_glove_cc_300_1m_vectors
To reduce memory usage and loading time, we’ve trimmed the vocabulary down to 1m entries.
This release also integrates all the code necessary for German parsing. A German model will be released shortly. To assist in multi-lingual processing, we’ve added a load() function. To load the English model with the GloVe vectors:
spacy.load('en', vectors='en_glove_cc_300_1m_vectors')
2016-02-07 v0.100.5
Fix incorrect use of header file, caused from problem with thinc
2016-02-07 v0.100.4: Fix OSX problem introduced in 0.100.3
Small correction to right_edge calculation
2016-02-06 v0.100.3
Support multi-threading, via the .pipe method. spaCy now releases the GIL around the parser and entity recognizer, so systems that support OpenMP should be able to do shared memory parallelism at close to full efficiency.
We’ve also greatly reduced loading time, and fixed a number of bugs.
2016-01-21 v0.100.2
Fix data version lock that affected v0.100.1
2016-01-21 v0.100.1: Fix install for OSX
v0.100 included header files built on Linux that caused installation to fail on OSX. This should now be corrected. We also update the default data distribution, to include a small fix to the tokenizer.
2016-01-19 v0.100: Revise setup.py, better model downloads, bug fixes
Redo setup.py, and remove ugly headers_workaround hack. Should result in fewer install problems.
Update data downloading and installation functionality, by migrating to the Sputnik data-package manager. This will allow us to offer finer grained control of data installation in future.
Fix bug when using custom entity types in Matcher. This should work by default when using the English.__call__ method of running the pipeline. If invoking Parser.__call__ directly to do NER, you should call the Parser.add_label() method to register your entity type.
Fix head-finding rules in Span.
Fix problem that caused doc.merge() to sometimes hang
Fix problems in handling of whitespace
2015-11-08 v0.99: Improve span merging, internal refactoring
Merging multi-word tokens into one, via the doc.merge() and span.merge() methods, no longer invalidates existing Span objects. This makes it much easier to merge multiple spans, e.g. to merge all named entities, or all base noun phrases. Thanks to @andreasgrv for help on this patch.
Lots of internal refactoring, especially around the machine learning module, thinc. The thinc API has now been improved, and the spacy._ml wrapper module is no longer necessary.
The lemmatizer now lower-cases non-noun, noun-verb and non-adjective words.
A new attribute, .rank, is added to Token and Lexeme objects, giving the frequency rank of the word.
2015-11-03 v0.98: Smaller package, bug fixes
Remove binary data from PyPi package.
Delete archive after downloading data
Use updated cymem, preshed and thinc packages
Fix information loss in deserialize
Fix __str__ methods for Python2
2015-10-23 v0.97: Load the StringStore from a json list, instead of a text file
Fix bugs in download.py
Require --force to over-write the data directory in download.py
Fix bugs in Matcher and doc.merge()
2015-10-19 v0.96: Hotfix to .merge method
Fix bug that caused text to be lost after .merge
Fix bug in Matcher when matched entities overlapped
2015-10-18 v0.95: Bugfixes
Reform encoding of symbols
Fix bugs in Matcher
Fix bugs in Span
Add tokenizer rule to fix numeric range tokenization
Add specific string-length cap in Tokenizer
Fix token.conjuncts
2015-10-09 v0.94
Fix memory error that caused crashes on 32bit platforms
Fix parse errors caused by smart quotes and em-dashes
2015-09-22 v0.93
Bug fixes to word vectors
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